Zephyrnet Logo

Why customer service chatbots fail — and how AI can prevent the tragedy

Date:

Source

“Hello! How may I assist you today?”

“I want to talk to your customer care representative.”

“Sweet! Welcome to Phoebe’s Orchids. Over 100000 happy customers trust us to bring their mornings alive with rich colours and fragrance. :)”

“Nice. Now if you could connect me with your support rep, that would be great. Thanks! ”

“We’ll be glad to walk you through some pretty choices.”

“Please connect me with a team member.”

“Awesome! You can explore our colourful gallery here! ;)”

“Speak to an agent?? I have got the wrong bunch.”

“Wonderful! Here is another bunch we think you’ll like very much.”

“Impossible!”

*customer logs off*

One of the most exasperating experiences of contacting a business is when an IVR system or a hardwired chatbot keeps running you around in circles with its stale, canned set of greetings. The predefined script that hardly veers off course, having been built for only very specific use cases, is a time-tested recipe for customer vexation. And what makes the whole shebang even more annoying is that people do not have an alternative to signing up for this trouble.

1. Knowledge graphs and Chatbots — An analytical approach.

2. Blender Vs Rasa open source chatbots

3. Picture my voice

4. Chat bots — A Conversational AI

Today, people can simply “chat” with virtual automated assistants across the apps and websites of their choosing to get LIVE cricket scores, know the weather, shop, update their account details, order food, book an appointment, and more. From playing a psychedelic rock number to checking the account balance, chatbots are already redefining how we interact with the world around us. It’s almost safe to say that the virtual assistants are fast becoming epitomes of service delivered better, cheaper, quicker. A Gartner research says that businesses will be looking at AI as their mainstream customer experience investment in the next couple of years. 47% of organizations across industries and verticals will use chatbots to automate customer care processes and around 40% will deploy virtual assistants.

Chatbots often misinterpret the requests and end up solving the wrong problem because they are not able to understand the right intent of the customer. Understanding ‘intent’ is critical for a chatbot to be able to actually and successfully cater to what the customer really asked for, so much so that ‘intent’ is really the building block for effective virtual assistants. However, many customers often find chatting with a bot to be a very taxing experience.

Owing to lack of conversational intelligence, chatbots often end up being tone-deaf to nuances of the dialogue and that leads to an inaccurate conversation. Most chatbots today are not capable of Natural Language Processing. They are concretely programmed to understand only a very specific set of instructions and falter when the ambit of conversation expands even a little too much. For instance, a smart virtual accounting assistant that wields a jargon-free finance vocabulary would stutter if given a shove outside of its territory of knowledge.

Confusing the users into thinking that they are talking to a human when they are not can be a serious security threat to a customer’s data and in direct conflict with an organization’s compliance standards and privacy policies. Businesses need to be transparent with their customers about using bots for communication to nurture their trust and respect their loyalty.

To perform one of its primary functions concerning predictive analytics, modern AI requires expansive and rich pools of data. AI’s deep-learning algorithms employ large quantities of data to train and equip themselves with reasoning capabilities for all possible use cases but are left flatfooted when the data set no longer accounts for the reality of the world we inhabit. Most AI systems today, for instance, the algorithms to predict the buying behaviour of shoppers or to predict the best strategies for investment, tank from want of enough data to train and evolve themselves through.

Chatbots that are incapable of sentiment analysis, fail protocol, and prefer to completely take the reins in their own hands do more harm than good to the business. If only Phoebe knew that she was losing customers majorly because she had not had her chatbots programmed to transfer to an agent when the situation asked for it! Often chatbots can fail to solve complex queries that can then require an agent’s urgent intervention. Also certain problems require more than just technical assistance; they need an agent’s empathy, reassurance, and time, which no chatbot but only a human being can offer.

Source: https://chatbotslife.com/why-customer-service-chatbots-fail-and-how-ai-can-prevent-the-tragedy-76532dc14eea?source=rss—-a49517e4c30b—4

spot_img

Latest Intelligence

spot_img